Title
Density Based Problem Space Search for the Capacitated Clustering p-Median Problem
Abstract
In the Capacitated Clustering Problem (CCP), a given set of n weighted points is to be partitioned into p clusters such that, the total weight of the points in each cluster does not exceed a given cluster capacity. The objective is to find a set of p centers that minimises total scatter of points allocated to them. In this paper a new constructive method, a general framework to improve the performance of greedy constructive heuristics, and a problem space search procedure for the CCP are proposed. The constructive heuristic finds patterns of natural subgrouping in the input data using concept of density of points. Elements of adaptive computation and periodic construction–deconstruction concepts are implemented within the constructive heuristic to develop a general framework for building efficient heuristics. The problem-space search procedure is based on perturbations of input data for which a controlled perturbation strategy, intensification and diversification strategies are developed. The implemented algorithms are compared with existing methods on a standard set of bench-marks and on new sets of large-sized instances. The results illustrate the strengths of our algorithms in terms of solution quality and computational efficiency.
Year
DOI
Venue
2004
10.1023/B:ANOR.0000039511.61195.21
Annals of Operations Research
Keywords
Field
DocType
capacitated clustering (p-median) problem, greedy density search, guided construction search method, metaheuristics, problem-space search
Cluster (physics),Mathematical optimization,Constructive,Heuristics,Cluster analysis,Periodic graph (geometry),Mathematics,Problem space,Metaheuristic,Computation
Journal
Volume
Issue
ISSN
131
1
1572-9338
Citations 
PageRank 
References 
9
0.60
13
Authors
2
Name
Order
Citations
PageRank
Samad Ahmadi122015.61
Ibrahim H. Osman281594.23